Literature DB >> 36120414

Usefulness of computed tomography textural analysis in renal cell carcinoma nuclear grading.

Israa Alnazer1,2,3, Omar Falou3,4,5,6, Pascal Bourdon1,2, Thierry Urruty1,2, Rémy Guillevin2,6, Mohamad Khalil3, Ahmad Shahin3, Christine Fernandez-Maloigne1,2.   

Abstract

Purpose: To evaluate the usefulness of computed tomography (CT) texture descriptors integrated with machine-learning (ML) models in the identification of clear cell renal cell carcinoma (ccRCC) and for the first time papillary renal cell carcinoma (pRCC) tumor nuclear grades [World Health Organization (WHO)/International Society of Urologic Pathologists (ISUP) 1, 2, 3, and 4]. Approach: A total of 143 ccRCC and 21 pRCC patients were analyzed in this study. Texture features were extracted from late arterial phase CT images. A complete separation of training/validation and testing subsets from the beginning to the end of the pipeline was adopted. Feature dimension was reduced by collinearity analysis and Gini impurity-based feature selection. The synthetic minority over-sampling technique was employed for imbalanced datasets. The ML classifiers were logistic regression, SVM, RF, multi-layer perceptron, and K -NN. The differentiation between low grades/ high grades, grade 1/grade 2, grade 3/grade 4, and between all grades was assessed for ccRCC and pRCC datasets. The classification performance was assessed and compared by certain metrics.
Results: Textures-based classifiers were able to efficiently identify ccRCC and pRCC grades. An accuracy and area under the characteristic operating curve (AUC) up to 91%/0.9, 91%/0.9, 90%/0.9, and 88%/1 were reached when discriminating ccRCC low grades/ high grades, grade 1/grade 2, grade 3/grade 4, and all grades, respectively. An accuracy and AUC up to 96%/1, 81%/0.8, 86%/0.9, and 88%/0.9 were found when differentiating pRCC low grades/ high grades, grade 1/grade 2, grade 3/grade 4, and all grades, respectively.
Conclusion: CT texture-based ML models can be used to assist radiologist in predicting the WHO/ISUP grade of ccRCC and pRCC pre-operatively.
© 2022 Society of Photo-Optical Instrumentation Engineers (SPIE).

Entities:  

Keywords:  computer-aided diagnosis; machine learning; renal cell carcinoma tumor grading; texture

Year:  2022        PMID: 36120414      PMCID: PMC9467905          DOI: 10.1117/1.JMI.9.5.054501

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  38 in total

1.  [The WHO/ISUP grading system for renal carcinoma].

Authors:  H Moch
Journal:  Pathologe       Date:  2016-07       Impact factor: 1.011

2.  Influence of segmentation margin on machine learning-based high-dimensional quantitative CT texture analysis: a reproducibility study on renal clear cell carcinomas.

Authors:  Burak Kocak; Ece Ates; Emine Sebnem Durmaz; Melis Baykara Ulusan; Ozgur Kilickesmez
Journal:  Eur Radiol       Date:  2019-02-12       Impact factor: 5.315

3.  Differentiation of low- and high-grade clear cell renal cell carcinoma: Tumor size versus CT perfusion parameters.

Authors:  Chao Chen; Qinqin Kang; Bing Xu; Hairuo Guo; Qiang Wei; Tiegong Wang; Hui Ye; Xinhuai Wu
Journal:  Clin Imaging       Date:  2017-07-03       Impact factor: 1.605

4.  Assessment of tumor heterogeneity by CT texture analysis: can the largest cross-sectional area be used as an alternative to whole tumor analysis?

Authors:  Francesca Ng; Robert Kozarski; Balaji Ganeshan; Vicky Goh
Journal:  Eur J Radiol       Date:  2012-11-26       Impact factor: 3.528

5.  Radiogenomics of Clear Cell Renal Cell Carcinoma: Associations Between mRNA-Based Subtyping and CT Imaging Features.

Authors:  Lan Bowen; Li Xiaojing
Journal:  Acad Radiol       Date:  2018-07-29       Impact factor: 3.173

6.  Differentiation of renal angiomyolipoma without visible fat from renal cell carcinoma by machine learning based on whole-tumor computed tomography texture features.

Authors:  En-Ming Cui; Fan Lin; Qing Li; Rong-Gang Li; Xiang-Meng Chen; Zhuang-Sheng Liu; Wan-Sheng Long
Journal:  Acta Radiol       Date:  2019-02-24       Impact factor: 1.990

7.  Prognostic significance of morphologic parameters in renal cell carcinoma.

Authors:  S A Fuhrman; L C Lasky; C Limas
Journal:  Am J Surg Pathol       Date:  1982-10       Impact factor: 6.394

8.  Radiomics-based Prognosis Analysis for Non-Small Cell Lung Cancer.

Authors:  Yucheng Zhang; Anastasia Oikonomou; Alexander Wong; Masoom A Haider; Farzad Khalvati
Journal:  Sci Rep       Date:  2017-04-18       Impact factor: 4.379

9.  Predicting sample size required for classification performance.

Authors:  Rosa L Figueroa; Qing Zeng-Treitler; Sasikiran Kandula; Long H Ngo
Journal:  BMC Med Inform Decis Mak       Date:  2012-02-15       Impact factor: 2.796

10.  Application of Texture Analysis in Diagnosis of Multiple Sclerosis by Magnetic Resonance Imaging.

Authors:  Ali Abbasian Ardakani; Akbar Gharbali; Yalda Saniei; Arash Mosarrezaii; Surena Nazarbaghi
Journal:  Glob J Health Sci       Date:  2015-03-30
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